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Counterfactual linguistic rule-based explanations based on locally relevant causal mechanisms

Zhang, Te; Wagner, Christian

Counterfactual linguistic rule-based explanations based on locally relevant causal mechanisms Thumbnail


Authors

Te Zhang



Abstract

Counterfactual (CF) explanations provide a potentially powerful mechanism to deliver meaningful explanations of AI decisions. CF explanations are convincing when they reflect causal relationships between variables, because humans are cause-effect thinkers. Prior work has established a rule generation framework called CF-MABLAR, which is designed to generate causal rules that provide CF explanations. However, in the real-world, an effect is often the result of multiple causal mechanisms, and rules obtained by CF-MABLAR may not capture the actual causal mechanism that leads to the effect, which we called the locally relevant causal mechanism. Consequently, CF explanations generated by CF-MABLAR have the risk of containing redundant components, which reduces the explainability of the obtained CF explanations. To address this issue, in this paper, we provide a detailed discussion about two key aspects of generating CF explanations from a causal perspective: 1) which variables require intervention and 2) what magnitude of an intervention is needed. We propose CF-MABLAR-local which allows users to generate CF explanations based on locally relevant causal mechanisms. We conduct experiments on several real-world data sets to compare CF explanations generated through different methods, and analyse the impact of different parameterizations in CF-MABLAR-local.

Citation

Zhang, T., & Wagner, C. (2025, July). Counterfactual linguistic rule-based explanations based on locally relevant causal mechanisms. Presented at 2025 IEEE International Conference on Fuzzy Systems, Reims, France

Presentation Conference Type Edited Proceedings
Conference Name 2025 IEEE International Conference on Fuzzy Systems
Start Date Jul 6, 2025
End Date Jul 9, 2025
Acceptance Date Apr 3, 2025
Deposit Date May 1, 2025
Peer Reviewed Peer Reviewed
Series Title IEEE International Fuzzy Systems Conference. Proceedings
Series ISSN 1544-5615
Keywords Fuzzy; Causality; rules; counterfactual; XAI
Public URL https://nottingham-repository.worktribe.com/output/48369238
Related Public URLs https://fuzzieee2025.conf.lip6.fr/

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